仿人机器人
强化学习
计算机科学
机器人
反向动力学
匹配(统计)
人工智能
运动学
控制(管理)
运动(物理)
解算器
夹持器
弹道
逆动力学
机器人运动学
跟踪(教育)
控制工程
机器人学习
工程类
机器人控制
运动控制
钥匙(锁)
人机交互
机器人学
适应(眼睛)
模拟
控制系统
作者
Gabriel B. Margolis,Michelle Wang,Nolan Fey,Pulkit Agrawal
标识
DOI:10.48550/arxiv.2510.17792
摘要
We introduce SoftMimic, a framework for learning compliant whole-body control policies for humanoid robots from example motions. Imitating human motions with reinforcement learning allows humanoids to quickly learn new skills, but existing methods incentivize stiff control that aggressively corrects deviations from a reference motion, leading to brittle and unsafe behavior when the robot encounters unexpected contacts. In contrast, SoftMimic enables robots to respond compliantly to external forces while maintaining balance and posture. Our approach leverages an inverse kinematics solver to generate an augmented dataset of feasible compliant motions, which we use to train a reinforcement learning policy. By rewarding the policy for matching compliant responses rather than rigidly tracking the reference motion, SoftMimic learns to absorb disturbances and generalize to varied tasks from a single motion clip. We validate our method through simulations and real-world experiments, demonstrating safe and effective interaction with the environment.
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